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Social Video Content Delivery 1st ed. 2016 [Paperback / softback]

  • Format: Paperback / softback, 52 pages, height x width: 235x155 mm, weight: 1124 g, 17 Illustrations, color; 7 Illustrations, black and white; X, 52 p. 24 illus., 17 illus. in color., 1 Paperback / softback
  • Series: SpringerBriefs in Electrical and Computer Engineering
  • Pub. Date: 13-Jun-2016
  • Publisher: Springer International Publishing AG
  • ISBN-10: 3319336509
  • ISBN-13: 9783319336503
  • Paperback / softback
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  • Format: Paperback / softback, 52 pages, height x width: 235x155 mm, weight: 1124 g, 17 Illustrations, color; 7 Illustrations, black and white; X, 52 p. 24 illus., 17 illus. in color., 1 Paperback / softback
  • Series: SpringerBriefs in Electrical and Computer Engineering
  • Pub. Date: 13-Jun-2016
  • Publisher: Springer International Publishing AG
  • ISBN-10: 3319336509
  • ISBN-13: 9783319336503
This brief presents new architecture and strategies for distribution of social video content. A primary framework for socially-aware video delivery and a thorough overview of the possible approaches is provided. The book identifies the unique characteristics of socially-aware video access and social content propagation, revealing the design and integration of individual modules that are aimed at enhancing user experience in the social network context. The change in video content generation, propagation, and consumption for online social networks, has significantly challenged the traditional video delivery paradigm. Given the massive amount of user-generated content shared in online social networks, users are now engaged as active participants in the social ecosystem rather than as passive receivers of media content. This revolution is being driven further by the deep penetration of 3G/4G wireless networks and smart mobile devices that are seamlessly integrated with online social

networking and media-sharing services. Despite increasingly abundant bandwidth and computational resources, the ever-increasing volume of data created by user-generated video content--along with the boundless coverage of socialized sharing--presents unprecedented challenges. 

Introduction.- Popularity of Social Videos.- Dynamical Social Video Propagation.- Propagation-Based Social Video Content Replication.- Concluding Remarks.
1 Introduction
1(6)
1.1 Background
1(1)
1.2 Previous Efforts
2(1)
1.3 Challenges in Social Video Delivery
3(1)
1.4 Social-Aware Video Delivery Framework
4(3)
References
5(2)
2 Popularity of Social Videos
7(16)
2.1 Social Video Popularity: Distribution and Evolution
7(8)
2.1.1 Amplified Skewness in Popularity Distribution
7(2)
2.1.2 Sharing in Small Social Groups
9(1)
2.1.3 Popularity Dynamics
10(1)
2.1.4 Popularity Evolution
11(2)
2.1.5 Popularity Comparison
13(2)
2.2 Social Popularity Prediction
15(6)
2.2.1 Social Popularity Prediction Framework
15(2)
2.2.2 Prediction Reward
17(2)
2.2.3 Prediction Policy
19(1)
2.2.4 Prediction Using Complete Information
19(2)
2.3 Summary
21(2)
References
21(2)
3 Dynamical Social Video Propagation
23(12)
3.1 Dynamic Social Video Propagation
23(4)
3.1.1 Social Locality
24(1)
3.1.2 Temporal Locality
25(1)
3.1.3 Geographical Locality
25(2)
3.2 Modeling Social Video Content Propagation
27(6)
3.2.1 A S2I3R Propagation Model
27(4)
3.2.2 Model Validation
31(1)
3.2.3 Implications
32(1)
3.3 Summary
33(2)
References
34(1)
4 Propagation-Based Social Video Content Replication
35(14)
4.1 Inferring Propagation for Social Content Replication
35(1)
4.2 Edge-Network Replication Architecture
36(3)
4.2.1 Edge-Cloud Replication
37(1)
4.2.2 Peer-Assisted Replication
38(1)
4.2.3 Design Challenges
38(1)
4.3 Propagation Prediction for Replication
39(4)
4.3.1 Propagation Region Prediction
39(1)
4.3.2 Global Audience Prediction
40(1)
4.3.3 Local Audience Prediction
41(2)
4.4 Propagation-Based Replication Strategies
43(3)
4.4.1 Region Selection in Edge-Cloud Replication
43(2)
4.4.2 Bandwidth Reservation for Social Content at Edge-Cloud Servers
45(1)
4.4.3 Cache Replacement in Peer-Assisted Replication
46(1)
4.5 Summary
46(3)
References
46(3)
5 Concluding Remarks
49
References
51